US8452506B2 - Method for monitoring the environment of an automatic vehicle - Google Patents
Method for monitoring the environment of an automatic vehicle Download PDFInfo
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- US8452506B2 US8452506B2 US12/693,587 US69358710A US8452506B2 US 8452506 B2 US8452506 B2 US 8452506B2 US 69358710 A US69358710 A US 69358710A US 8452506 B2 US8452506 B2 US 8452506B2
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S15/00—Systems using the reflection or reradiation of acoustic waves, e.g. sonar systems
- G01S15/87—Combinations of sonar systems
-
- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S15/00—Systems using the reflection or reradiation of acoustic waves, e.g. sonar systems
- G01S15/88—Sonar systems specially adapted for specific applications
- G01S15/93—Sonar systems specially adapted for specific applications for anti-collision purposes
- G01S15/931—Sonar systems specially adapted for specific applications for anti-collision purposes of land vehicles
-
- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/93—Radar or analogous systems specially adapted for specific applications for anti-collision purposes
- G01S13/931—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles
-
- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/93—Radar or analogous systems specially adapted for specific applications for anti-collision purposes
- G01S13/931—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles
- G01S2013/93185—Controlling the brakes
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/93—Radar or analogous systems specially adapted for specific applications for anti-collision purposes
- G01S13/931—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles
- G01S2013/932—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles using own vehicle data, e.g. ground speed, steering wheel direction
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/93—Radar or analogous systems specially adapted for specific applications for anti-collision purposes
- G01S13/931—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles
- G01S2013/9323—Alternative operation using light waves
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/93—Radar or analogous systems specially adapted for specific applications for anti-collision purposes
- G01S13/931—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles
- G01S2013/9324—Alternative operation using ultrasonic waves
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/93—Radar or analogous systems specially adapted for specific applications for anti-collision purposes
- G01S13/931—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles
- G01S2013/9327—Sensor installation details
- G01S2013/93271—Sensor installation details in the front of the vehicles
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S13/00—Systems using the reflection or reradiation of radio waves, e.g. radar systems; Analogous systems using reflection or reradiation of waves whose nature or wavelength is irrelevant or unspecified
- G01S13/88—Radar or analogous systems specially adapted for specific applications
- G01S13/93—Radar or analogous systems specially adapted for specific applications for anti-collision purposes
- G01S13/931—Radar or analogous systems specially adapted for specific applications for anti-collision purposes of land vehicles
- G01S2013/9327—Sensor installation details
- G01S2013/93272—Sensor installation details in the back of the vehicles
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- G—PHYSICS
- G01—MEASURING; TESTING
- G01S—RADIO DIRECTION-FINDING; RADIO NAVIGATION; DETERMINING DISTANCE OR VELOCITY BY USE OF RADIO WAVES; LOCATING OR PRESENCE-DETECTING BY USE OF THE REFLECTION OR RERADIATION OF RADIO WAVES; ANALOGOUS ARRANGEMENTS USING OTHER WAVES
- G01S15/00—Systems using the reflection or reradiation of acoustic waves, e.g. sonar systems
- G01S15/88—Sonar systems specially adapted for specific applications
- G01S15/93—Sonar systems specially adapted for specific applications for anti-collision purposes
- G01S15/931—Sonar systems specially adapted for specific applications for anti-collision purposes of land vehicles
- G01S2015/937—Sonar systems specially adapted for specific applications for anti-collision purposes of land vehicles sensor installation details
- G01S2015/938—Sonar systems specially adapted for specific applications for anti-collision purposes of land vehicles sensor installation details in the bumper area
Definitions
- the present invention relates to a method for monitoring the environment of a vehicle capable of moving according to a path and a detection device enabling the method to be implemented.
- a known prior art method for monitoring the environment of a vehicle capable of moving according to a path uses specific detection sensors, such as ultrasonic sensors, usually known as “UPA” standing for “Ultrasonic Park Assist” to detect a target object, such as a pedestrian or an intersected vehicle, and to carry out automatic braking to avoid a collision for example.
- UPA ultrasonic sensors
- a drawback of this prior art is that since such sensors are not directional sensors, they are not capable of checking if an obstacle is situated on the path of the vehicle. Therefore, this involves decisions concerning automatic braking which are not always adequate. For example, if the subject vehicle intersects another vehicle which is situated at the side, inopportune braking could be triggered, although the intersected vehicle is not a problem.
- One object of the present invention is a method for monitoring the environment of a vehicle capable of moving according to a path, which enables the aforesaid problem to be resolved.
- this object is achieved by a method for monitoring the environment of a vehicle capable of moving according to a path, wherein it comprises the steps of:
- the detection sensors are preferably ultrasonic sensors. At least one critical level takes account of the angle at the steering wheel of the vehicle.
- the various critical levels and the determination of an obstacle on the path enable an adequate decision concerning the braking of the vehicle to be made because these parameters provide accurate data on the driving situation and detection of an obstacle in the environment of the vehicle.
- the method also exhibits the following features.
- a first critical level of driving is determined depending on the activation of the detection sensors. This enables the critical level to be weighted according to the number of sensors which have detected an obstacle (the situation is more critical if several sensors have detected an obstacle).
- a second critical level of driving is determined as a function of a speed of the vehicle. This enables the speed of the vehicle to be taken into account as a critical parameter. The critical level is more important if the speed of the vehicle is high.
- a third critical level of driving is determined depending on a distance from the obstacle calculated in relation to the vehicle. This enables the distance from the obstacle in relation to the vehicle to be taken into account as critical parameter.
- the critical level is higher if the distance between the obstacle and the car is short.
- a fourth critical level of driving is determined depending on the relative speed of the obstacle in relation to the vehicle. This enables the relative speed of the obstacle in relation to the vehicle as critical parameter to be taken into account. The critical level is higher if the obstacle is approached quickly.
- the distance from the obstacle is calculated depending on an angle at the steering wheel of the vehicle. This ensures more precision and reliability when maneuvering at low speed (lateral acceleration and yaw rate are not very representative when quasi static).
- the sensors considered are those distributed overall around a direction corresponding to the angle at the steering wheel. For example, if the angle at the steering wheel is to the right, all the sensors considered will be on the right; if the angle at the steering wheel is to the left, all the sensors considered will be on the left; if the angle is zero all the sensors will be in the center. In the latter case, therefore all the sensors may be considered.
- several sets of sensors can be associated with several intervals of angle at the wheel. The number of intervals is not restrictive.
- the distance from the obstacle is calculated using the smallest sensor distance among the sensor distances transmitted by the detection sensors considered. This calculation is more simple.
- a critical marker is determined on the basis of the calculated critical levels of driving equal to the average of the two highest critical levels of driving.
- the step of determining an obstacle on the path of the vehicle comprises the sub-steps of:
- the method moreover comprises an additional step of detecting whether the vehicle comprises a rear trailer. This enables an electrical trailer contact to be dispensed with. It must be known if there is a trailer so as not to wrongly detect an obstacle at the rear although it is a trailer, which would not be relevant.
- the decision concerning braking is a minimum request to apply the brakes of the vehicle in order to accelerate triggering of the brakes if there is an obstacle on the path of the vehicle and the various critical levels of driving are higher than a given critical threshold. This enables braking reaction time to be improved.
- a device for monitoring the environment of a vehicle capable of moving according to a path wherein it comprises a control unit for:
- the sensors of this monitoring device are ultrasonic detection sensors.
- the parameters include the angle at the steering wheel.
- control unit is moreover capable of:
- the inventive monitoring device implements a method, object of this invention.
- a third object of the invention relates to a computer program product comprising one or more sequences of instructions executable by a data processor, the execution of the sequences of instructions enabling the method to be implemented according to any one of the above features.
- FIG. 1 illustrates a diagram of a first non-restrictive embodiment of the inventive monitoring method
- FIG. 2 illustrates a diagram of a vehicle comprising detection sensors used by the monitoring method of FIG. 1 ;
- FIG. 3 illustrates a diagram explaining the calculation of a distance from an obstacle in relation to a vehicle depending on an angle at the steering wheel of the vehicle, according to a step of the monitoring method of FIG. 1 ;
- FIG. 4 illustrates a diagram of a vehicle and static zones of detection used by the monitoring method of FIG. 1 ;
- FIG. 5 illustrates a diagram of a vehicle and dynamic zones of detection used by the monitoring method of FIG. 1 ;
- FIG. 6 illustrates a non-restrictive embodiment of a device for implementing the method of FIG. 1 ;
- FIG. 7 illustrates a diagram of a second non-restrictive embodiment of the inventive monitoring method.
- the method for monitoring the environment of a vehicle capable of moving according to a path, according to the invention, is described in a non-restrictive embodiment on FIG. 1 .
- autonomous vehicle is understood to mean any vehicle comprising an engine.
- the monitoring method includes the following steps as illustrated in FIG. 1 :
- step DEF_NCR calculating a plurality of critical levels of driving NCR as a function of the detection sensors C, parameters related to the vehicle V and an obstacle O being in the environment of the vehicle
- step DEF_OTR determining if an obstacle O is on the path TR of the vehicle V
- step DEC (NCR, O)
- the vehicle comprises four front detection sensors (two central C 2 , C 3 and two lateral C 1 , C 4 ) and four rear detection sensors (two central C 6 , C 7 and two lateral C 5 , C 8 ) as illustrated on FIG. 2 .
- a plurality of critical levels of driving NCR is calculated depending on the detection sensors C, the vehicle V and an obstacle O being in the environment of the vehicle.
- a critical level of driving NCR consists of a value varying between 0 and 1.
- a first critical level of driving NCR 1 is determined depending on the activation of the detection sensors C. It will be noted that in a non-restrictive embodiment, a sensor C is active if it transmits a sensor distance Dc less than a maximum detection distance Dcmax for a sensor, that is to say in a non-restrictive example 2 meters for Dcmax.
- the first critical level NCR 1 is determined in the following way:
- the number of active sensors is multiplied by a gain equal to a first VA 1 value, in a non-restrictive example equal to 0.25.
- the sensors C 1 and C 4 active. Then the number of active sensors is multiplied by a gain equal to a second value VA 2 , in a non-restrictive example equal to 0.125.
- the first value VA 1 is higher than the second value VA 2 because detection executed by the central sensors is more critical than detection executed by the lateral sensors.
- a second critical level of driving NCR 2 is determined depending on a speed Vit of the vehicle V.
- Second critical level NCR 2 is determined in the following way:
- the critical level NCR 2 is equal to 1.
- a third critical level of driving NCR 3 is determined depending on a distance from the obstacle Do calculated in relation to the vehicle V.
- the distance Do from the obstacle is calculated depending on an angle at the steering wheel ⁇ of the vehicle.
- the sensors are thus weighted depending on the will of the driver to go to the left or to the right. This ensures better robustness as regards monitoring. Calculation is executed in the following way in a non-restrictive embodiment.
- the angle at the steering wheel ⁇ can be standardized by dividing it by the maximum value (in a non-restrictive example: 540°) in order to obtain values ranging between ⁇ 1 and 1 for the angle at the steering wheel as illustrated on FIG. 3 .
- the minimum of the sensor distances Dc transmitted by a certain number of detection sensors is used as illustrated on FIG. 3 .
- Do MinDc (C 1 , C 2 , C 3 ).
- a fourth critical level of driving NCR 4 is determined depending on the relative speed of the obstacle VitR in relation to the vehicle.
- the relative speed VitR is negative when the vehicle V is approaching the obstacle O. It will be noted that the relative speed is calculated on the basis of the distances determined by the ultrasonic sensors.
- the fourth critical level NCR 4 is equal to the relative speed VitR multiplied by a gain equal to ⁇ 1.3. This value is pre-determined in order to give a high critical level if the obstacle approaches the car to a significant degree.
- a critical driving marker NCR_FLG is deduced on the basis of the critical levels of driving calculated.
- the critical driving marker NCR_FLG is equal to the average of the two highest critical driving levels among the four critical levels calculated.
- NCR critical level
- a second phase 2 it is determined if an obstacle O is on the path TR of the vehicle V.
- the step of determining an obstacle O on the path TR of the vehicle comprises the sub-steps, as illustrated on FIG. 1 , of:
- a level of confidence NP associated with a detection sensor C is determined depending on a distance Dc transmitted by the detection sensors.
- a level of confidence NP depends on a sensor distance transmitted by a sensor C. It is reckoned that the shorter the sensor distance Dc, the higher the level of confidence NP. It is therefore reckoned that a sensor C has detected a real obstacle and not some noise, echo or another vehicle which passes alongside the subject vehicle.
- a level of confidence includes:
- a sensor C is active if it transmits a sensor distance Dc lower than a maximum detection distance Dcmax (2 meters in the example used) for a sensor.
- a second sub-step 2 b static zones of detection Zs and probabilities of detection PZs associated with each static zone Zs depending on the given levels of confidence NP are defined.
- one or more detection sensors C is associated with each static zone Zs.
- sensor C 1 is associated with zone ZsA;
- sensors C 1 and C 2 are associated with zone ZsB;
- sensors C 1 , C 2 and C 3 are associated with zone ZsC;
- sensors C 2 , C 3 and C 4 are associated with zone ZsD;
- sensors C 3 and C 4 are associated with zone ZsE;
- sensor C 4 is associated with zone ZsF.
- the levels of confidence NP associated with each sensor previously calculated are used initially.
- PZsA NP c1
- PZsB ( NP c1 *NP c2 )/[( NP c1 *NP c2 )+((1 ⁇ NP c1 )*(1 ⁇ NP c2 ))]
- PZsC ( NP c1 *NP c2 *NP c3 )/[( NP c1 *NP c2 *NP c3 )+((1 ⁇ NP c1 )*(1 ⁇ NP c2 )*(1 ⁇ NP c3 ))]
- PZsD ( NP c2 *NP c3 *NP c4 )/[( NP c2 *NP c3 *NP c4 )+((1 ⁇ NP c2 )*(1 ⁇ NP c3 )*(1 ⁇ NP c4 )]
- PZsE ( NP c3 *NP
- a third sub-step 2 c dynamic zones of detection Zd are defined.
- first zone Zd 1 OUT_RF for a dynamic zone furthest on the right of the vehicle V;
- second zone Zd 2 COR_RF for a dynamic zone on the right of the vehicle V;
- third zone Zd 3 MID_F for a dynamic zone in the middle of the vehicle V;
- a fourth sub-step 2 d it is determined if an obstacle O is situated on the path TR of the vehicle, as a function of the probabilities Pzs and the dynamic zones Zd.
- determination is executed in the following way.
- a first threshold of reliability (which is a value configurable on the vehicle).
- S 1 0.95.
- a second threshold of reliability (which is a value configurable on the vehicle).
- S 2 0.95.
- a third threshold of reliability (which is a value configurable on the vehicle).
- S 3 0.95.
- a fourth threshold of reliability (which is a value configurable on the vehicle).
- S 4 0.95.
- DS a threshold of distance representing a situation where the obstacle O is very close to the vehicle V.
- DS 0.8 m.
- an obstacle O is situated in the fourth dynamic zone COR_LF or in the second dynamic zone COR_RF, it means there is an obstacle O in a left or right corner of the vehicle V.
- a corner marker COR_FLG is positioned at one. If not, the marker is positioned at zero.
- an obstacle O is situated in the third dynamic zone MID_F, it means there is an obstacle O in the middle of the path of the vehicle V.
- a middle marker MID_FLG is positioned at one. If not, the marker is positioned at zero.
- a path marker INTR_FLG 1 is positioned at one.
- a probable path marker INTR_FLG 2 is positioned at one.
- S 8 being a threshold of reliability equal to 0.85 in a non-restrictive example, it means there is an obstacle O in front of the vehicle V but which is situated outside the path TR of the vehicle V.
- a decision concerning the braking of the vehicle is made.
- the decision concerning braking is a decision to trigger automatic braking.
- the automatic reduction of the speed of the automotive vehicle V is executed by autonomous braking. Autonomous braking avoids a driver of the automotive vehicle V himself having to slow down using a brake pedal.
- braking can be hydraulic, electro-hydraulic or electric.
- the decision concerning braking is a minimum braking request of the brakes of the vehicle to accelerate triggering of the brakes if there is an obstacle O on the path of the vehicle and if the various critical levels of driving are higher than a given critical threshold NCR_S.
- the minimum braking request RQ is sent by means of a braking command transmitted by a control unit UC.
- the braking command is transmitted to a pump ABS located in an ESC “Electronic Stability Control” modulator in order to reduce the hydraulic response time of the brakes, by filling the brake calipers with brake fluid in an anticipated way, creating hydraulic pressure in the brakes which are then “pre-charged”.
- the pump ABS enables pressure in the brakes of the automotive vehicle V to be generated/removed, while cooperating with a hydraulic modulator unit contained in the ESC modulator, which forces the brake calipers of the disc brake together.
- this function of pre-filling the brakes of the automotive vehicle V with pressure is usually called “brake pre-fill”.
- this minimum braking request RQ enables the pressure of the brakes to be increased by one or two bars.
- the braking command is transmitted to an electrical brake motor MB to bring the brake calipers of the disc brake together.
- the method described enables automatic braking to be triggered based on precise parameters (obstacle O on the path of the vehicle, angle at the steering wheel, static and dynamic zones of detection).
- the method of the invention is implemented by a device DISP for monitoring the environment of a vehicle capable of moving according to a path, illustrated on FIG. 6 .
- This device DISP is integrated in the vehicle V.
- This device DISP notably comprises a control unit UC for:
- control unit UC is moreover capable of:
- the detection device DISP moreover can comprise the detection sensors C 1 to C 8 .
- the detection sensors C are ultrasonic sensors.
- the advantage of such sensors is their broad cone of detection, their low cost and their omnipresence in the automobile industry. It will be noted that these sensors generally have a range of approximately 2 meters in contrast to detection sensors such as lidars or radars which have a longer range.
- implementation of the monitoring method disclosed above can be executed by means of a “software” programmed microprocessor, cabled logic and/or “hardware” electronic components.
- the monitoring device DISP can include a computer program product PG comprising one or more sequences of instructions executable by a data processing device such as a microprocessor or processing unit of a microcontroller, an ASIC, a computer etc, the execution of the sequences of instructions enabling the method described to be implemented.
- a data processing device such as a microprocessor or processing unit of a microcontroller, an ASIC, a computer etc.
- Such a computer program PG can be installed in writable non-volatile memory of the ROM type or in rewritable nonvolatile memory of the EEPROM or FLASH type.
- the computer program PG can be written to memory in the works or loaded to memory or remotely downloaded to memory.
- the sequences of instructions can be sequences of machine instructions or sequences of a control language interpreted by the processing unit at the time of their execution.
- the computer program PG is written to a memory in the control unit UC of the device DISP.
- the monitoring method can also comprise an additional step to detect whether the vehicle comprises a rear trailer REM (step DETECT_REM as illustrated on FIG. 7 ).
- This additional step is executed before the decision concerning braking is made (as illustrated on FIG. 7 ).
- This additional step is triggered according to two conditions:
- detection of a rear trailer REM is executed as follows.
- the difference DIFF is calculated between the speed of the vehicle and the relative speed VitR of the obstacle O, here a rear obstacle O, in relation to the vehicle, the latter being calculated on the basis of the sensor distance Dc provided by the sensor through deriving the distance. If this difference DIFF is equal to zero, it means the obstacle O is stationary in relation to the ground. If the absolute value of the relative speed VitR is zero and the obstacle O is not stationary, it is deduced therefrom that the obstacle O is a trailer REM. Then a trailer marker FLG_REM is positioned at one.
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Abstract
A device, program and method for monitoring the environment of a vehicle capable of moving according to a path. The device, program and method comprises the steps of calculating a plurality of critical levels of driving depending on detection sensors, parameters related to the vehicle and an obstacle being in the environment of the vehicle, determining if an obstacle is on the path of the vehicle and depending on the calculated critical levels of driving and determination of an obstacle on the path of the vehicle, making a decision concerning the braking of the vehicle.
Description
This application claims priority to French Application No. 0900382 filed Jan. 29, 2009, which application is incorporated herein by reference and made a part hereof.
1. Field of the Invention
The present invention relates to a method for monitoring the environment of a vehicle capable of moving according to a path and a detection device enabling the method to be implemented.
It finds application particularly in the field of automotive vehicles.
2. Description of the Related Art
In the automotive vehicle industry, a known prior art method for monitoring the environment of a vehicle capable of moving according to a path uses specific detection sensors, such as ultrasonic sensors, usually known as “UPA” standing for “Ultrasonic Park Assist” to detect a target object, such as a pedestrian or an intersected vehicle, and to carry out automatic braking to avoid a collision for example.
A drawback of this prior art is that since such sensors are not directional sensors, they are not capable of checking if an obstacle is situated on the path of the vehicle. Therefore, this involves decisions concerning automatic braking which are not always adequate. For example, if the subject vehicle intersects another vehicle which is situated at the side, inopportune braking could be triggered, although the intersected vehicle is not a problem.
What is needed, therefore, is a device and method that improves upon and provides advantages over the prior art.
One object of the present invention is a method for monitoring the environment of a vehicle capable of moving according to a path, which enables the aforesaid problem to be resolved.
According to a first aim of the invention, this object is achieved by a method for monitoring the environment of a vehicle capable of moving according to a path, wherein it comprises the steps of:
calculating a plurality of critical levels of driving depending on detection sensors, parameters related to the vehicle and an obstacle being in the environment of the vehicle;
determining if an obstacle is on the path of the vehicle; and
depending on the calculated critical levels and determination of an obstacle on the path of the vehicle, making a decision concerning the braking of the vehicle.
The detection sensors are preferably ultrasonic sensors. At least one critical level takes account of the angle at the steering wheel of the vehicle.
This ensures more precision and reliability when maneuvering at low speed.
As will be seen in detail below, the various critical levels and the determination of an obstacle on the path enable an adequate decision concerning the braking of the vehicle to be made because these parameters provide accurate data on the driving situation and detection of an obstacle in the environment of the vehicle.
According to non-restrictive embodiments, the method also exhibits the following features.
A first critical level of driving is determined depending on the activation of the detection sensors. This enables the critical level to be weighted according to the number of sensors which have detected an obstacle (the situation is more critical if several sensors have detected an obstacle).
A second critical level of driving is determined as a function of a speed of the vehicle. This enables the speed of the vehicle to be taken into account as a critical parameter. The critical level is more important if the speed of the vehicle is high.
A third critical level of driving is determined depending on a distance from the obstacle calculated in relation to the vehicle. This enables the distance from the obstacle in relation to the vehicle to be taken into account as critical parameter. The critical level is higher if the distance between the obstacle and the car is short.
A fourth critical level of driving is determined depending on the relative speed of the obstacle in relation to the vehicle. This enables the relative speed of the obstacle in relation to the vehicle as critical parameter to be taken into account. The critical level is higher if the obstacle is approached quickly.
The distance from the obstacle is calculated depending on an angle at the steering wheel of the vehicle. This ensures more precision and reliability when maneuvering at low speed (lateral acceleration and yaw rate are not very representative when quasi static).
Depending on the angle at the steering wheel of the vehicle, only the distances measured by some of the detection sensors are considered. Robustness as regards monitoring is therefore improved.
The sensors considered are those distributed overall around a direction corresponding to the angle at the steering wheel. For example, if the angle at the steering wheel is to the right, all the sensors considered will be on the right; if the angle at the steering wheel is to the left, all the sensors considered will be on the left; if the angle is zero all the sensors will be in the center. In the latter case, therefore all the sensors may be considered. Thus several sets of sensors can be associated with several intervals of angle at the wheel. The number of intervals is not restrictive.
The distance from the obstacle is calculated using the smallest sensor distance among the sensor distances transmitted by the detection sensors considered. This calculation is more simple.
A critical marker is determined on the basis of the calculated critical levels of driving equal to the average of the two highest critical levels of driving.
The step of determining an obstacle on the path of the vehicle comprises the sub-steps of:
determining a level of confidence associated with a detection sensor depending on a distance transmitted by the detection sensors;
defining static zones of detection and probabilities of detection associated with each static zone depending on the given levels of confidence;
defining dynamic zones of detection; and
determining if an obstacle is situated on the path of the vehicle, as a function of the probabilities and the dynamic zones.
This enables the obstacles to be better detected depending on what the driver does with the steering wheel and thus on possible changes of direction.
The method moreover comprises an additional step of detecting whether the vehicle comprises a rear trailer. This enables an electrical trailer contact to be dispensed with. It must be known if there is a trailer so as not to wrongly detect an obstacle at the rear although it is a trailer, which would not be relevant.
The decision concerning braking is a minimum request to apply the brakes of the vehicle in order to accelerate triggering of the brakes if there is an obstacle on the path of the vehicle and the various critical levels of driving are higher than a given critical threshold. This enables braking reaction time to be improved.
According to a second object of the invention, it relates to a device for monitoring the environment of a vehicle capable of moving according to a path, wherein it comprises a control unit for:
calculating a plurality of critical levels of driving depending on detection sensors, parameters related to the vehicle and an obstacle being in the environment of the vehicle;
determining if an obstacle is on the path of the vehicle; and
depending on the calculated critical levels and determination of an obstacle on the path of the vehicle, making a decision concerning the braking of the vehicle.
The sensors of this monitoring device, according to an embodiment, are ultrasonic detection sensors. The parameters include the angle at the steering wheel.
According to a non-restrictive embodiment, the control unit is moreover capable of:
determining a level of confidence associated with a detection sensor depending on a distance transmitted by the detection sensors;
defining static zones of detection and probabilities of detection associated with each static zone depending on the given levels of confidence;
defining dynamic zones of detection; and
determining if an obstacle is situated on the path of the vehicle, as a function of the probabilities and the dynamic zones.
According to an embodiment, the inventive monitoring device implements a method, object of this invention.
According to a third object of the invention, it relates to a computer program product comprising one or more sequences of instructions executable by a data processor, the execution of the sequences of instructions enabling the method to be implemented according to any one of the above features.
These and other objects and advantages of the invention will be apparent from the following description, the accompanying drawings and the appended claims.
Other features and advantages of this invention will be better understood by way of the description and non-restrictive drawings, wherein:
The term “automotive vehicle” is understood to mean any vehicle comprising an engine.
The monitoring method includes the following steps as illustrated in FIG. 1 :
calculating a plurality of critical levels of driving NCR as a function of the detection sensors C, parameters related to the vehicle V and an obstacle O being in the environment of the vehicle (step DEF_NCR);
determining if an obstacle O is on the path TR of the vehicle V (step DEF_OTR); and
depending on the calculated critical levels NCR and determination of an obstacle O on the path TR of the vehicle V, making a decision concerning the braking of the vehicle (step DEC (NCR, O)).
It will be noted that in the example used for the description, the vehicle comprises four front detection sensors (two central C2, C3 and two lateral C1, C4) and four rear detection sensors (two central C6, C7 and two lateral C5, C8) as illustrated on FIG. 2 .
It will be noted that, for the continuation of the description, the example of monitoring the environment in front of the vehicle is described. But of course what is to be described below applies in the same manner to the rear environment of the vehicle.
The steps of the method are described in detail below.
In a first step 1 (FIG. 1 ), a plurality of critical levels of driving NCR is calculated depending on the detection sensors C, the vehicle V and an obstacle O being in the environment of the vehicle.
In a non-restrictive embodiment, a critical level of driving NCR consists of a value varying between 0 and 1.
First Critical Level NCR1
In a non-restrictive embodiment, a first critical level of driving NCR1 is determined depending on the activation of the detection sensors C. It will be noted that in a non-restrictive embodiment, a sensor C is active if it transmits a sensor distance Dc less than a maximum detection distance Dcmax for a sensor, that is to say in a non-restrictive example 2 meters for Dcmax.
The first critical level NCR1 is determined in the following way:
If the sensors C2 or C3 (those centered at the front of the vehicle) are active the number of active sensors is multiplied by a gain equal to a first VA1 value, in a non-restrictive example equal to 0.25.
If not this means the sensors C1 and C4 active. Then the number of active sensors is multiplied by a gain equal to a second value VA2, in a non-restrictive example equal to 0.125.
It will be noted that the first value VA1 is higher than the second value VA2 because detection executed by the central sensors is more critical than detection executed by the lateral sensors.
Second Critical Level NCR2
In a non-restrictive embodiment, a second critical level of driving NCR2 is determined depending on a speed Vit of the vehicle V.
Second critical level NCR2 is determined in the following way:
If the vehicle speed Vit is equal to a maximum value VitMax, in a non-restrictive example of 10 km/h, the critical level NCR2 is equal to 1.
If not the critical level NCR2 is equal to 0 at zero km/h and varies linearly between these 2 values.
Third Critical Level NCR3
In a non-restrictive embodiment, a third critical level of driving NCR3 is determined depending on a distance from the obstacle Do calculated in relation to the vehicle V.
It is reckoned that the greater the distance Do from the obstacle, the further the obstacle O is away from the vehicle and the less critical the third critical level of driving NCR3.
In a non-restrictive embodiment, the third level of driving NCR3 is equal to: NCR3=[(Do−Dcmax)/[(0.25−Dcmax)], with Dcmax=2 meters as considered previously.
In a non-restrictive embodiment, the distance Do from the obstacle is calculated depending on an angle at the steering wheel α of the vehicle. The sensors are thus weighted depending on the will of the driver to go to the left or to the right. This ensures better robustness as regards monitoring. Calculation is executed in the following way in a non-restrictive embodiment.
Five different states are determined for the angle at the steering wheel which are the following as illustrated on FIG. 3 :
α=FG, which means the steering wheel is in an interval between completely to the left (that is to say on the left stop) and a slightly lesser value;
α=MG, which means the steering wheel is situated in the center on the left;
α=M, which means the steering wheel is situated in the center (that is to say on the right);
α=MD, which means the steering wheel is situated in the center on the right; and
α=FD, which means the steering wheel is at an interval between completely to the right (that is to say on the right stop) and a slightly lesser value.
It will be noted that in a non-restrictive embodiment, the angle at the steering wheel α can be standardized by dividing it by the maximum value (in a non-restrictive example: 540°) in order to obtain values ranging between −1 and 1 for the angle at the steering wheel as illustrated on FIG. 3 .
Depending on the state of the angle at the steering wheel, the minimum of the sensor distances Dc transmitted by a certain number of detection sensors is used as illustrated on FIG. 3 .
Thus, when α=FG, only the sensor distances Dc of the sensors C1, C2 and C3 are used. It is reckoned that the sensor furthest on the right C4 is not to be taken into account.
Thus the distance from the obstacle O in relation to the vehicle V is determined as being:
Do=MinDc (C1, C2, C3).
In the same way, for α=MG, Do=MinDc (C1, C2, C3). It is reckoned that the sensor furthest on the right C4 is not to be taken into account.
In the same way, for α=M, Do=MinDc (C2, C3). It is reckoned that the sensors furthest on the left C1 and on the right C4 are not to be taken into account.
In the same way, for α=MD, Do=MinDc (C2, C3, C4). It is reckoned that the sensor furthest on the left C1 is not to be taken into account.
In the same way, for α=FD, Do=MinDc (C2, C3, C4). It is reckoned that the sensor furthest on the left C1 is not to be taken into account.
Fourth Critical Level NCR4
In a non-restrictive embodiment, a fourth critical level of driving NCR4 is determined depending on the relative speed of the obstacle VitR in relation to the vehicle.
It is pointed out that the relative speed VitR is negative when the vehicle V is approaching the obstacle O. It will be noted that the relative speed is calculated on the basis of the distances determined by the ultrasonic sensors.
The fourth critical level NCR4 is equal to the relative speed VitR multiplied by a gain equal to −1.3. This value is pre-determined in order to give a high critical level if the obstacle approaches the car to a significant degree.
In a non-restrictive embodiment, after these four critical levels NCR1 to NCR4 have been calculated, a critical driving marker NCR_FLG is deduced on the basis of the critical levels of driving calculated. In a non-restrictive embodiment, the critical driving marker NCR_FLG is equal to the average of the two highest critical driving levels among the four critical levels calculated. Thus a better estimate of the braking decision to be made can be obtained; it is considered that only one critical level NCR is not sufficient to say that the situation is critical (for example the car which is moving at 10 km/h gives a NCR2=1 (or more) but if there is no obstacle, the situation will not be too critical; on the other hand if addition to NCR2, there are other active sensors for example NCR1, the situation becomes more critical).
In a second phase 2, it is determined if an obstacle O is on the path TR of the vehicle V.
In a non-restrictive embodiment, the step of determining an obstacle O on the path TR of the vehicle comprises the sub-steps, as illustrated on FIG. 1 , of:
determining a level of confidence NP associated with a detection sensor C depending on a distance Dc transmitted by the detection sensors (sub-step DEF_NP (DC));
defining static zones of detection Zs and probabilities of detection PZs associated with each static zone Zs depending on the given levels of confidence NP (sub-step DEF_Zs (NP));
defining dynamic zones of detection Zd (DEF_Zd sub-step); and
determining if an obstacle O is situated on the path TR of the vehicle, as a function of the probabilities of detection Pzs and the dynamic zones Zd (sub-step DETECT_OTR (Zs, Zd)).
The sub-steps are described in detail below.
In a first sub-step 2 a), a level of confidence NP associated with a detection sensor C is determined depending on a distance Dc transmitted by the detection sensors.
A level of confidence NP depends on a sensor distance transmitted by a sensor C. It is reckoned that the shorter the sensor distance Dc, the higher the level of confidence NP. It is therefore reckoned that a sensor C has detected a real obstacle and not some noise, echo or another vehicle which passes alongside the subject vehicle.
Thus, in non-restrictive examples, a level of confidence includes:
-
- the following values for an active sensor C:
NP=0.95, for Dc<0.8 m.
NP=0.8, for Dc>1.5 m
Np=0.90, for Dc=1 m
Np=0.85, for Dc=1.2 m
It will be noted that the values ranging between these values are extrapolated linearly.
It is pointed out that a sensor C is active if it transmits a sensor distance Dc lower than a maximum detection distance Dcmax (2 meters in the example used) for a sensor.
-
- the following value for a non-active sensor:
NP=0.5
In the latter case, it means for example that an obstacle is not detected although it is present.
In a second sub-step 2 b), static zones of detection Zs and probabilities of detection PZs associated with each static zone Zs depending on the given levels of confidence NP are defined.
In a non-restrictive embodiment, for the four front sensors C1 to C4, six static zones ZsA to ZsF are defined as illustrated on FIG. 4 .
For each static zone, an associated probability of detection PZs is calculated using the Bayes theory of probability, known by the person skilled in the art, is calculated.
To this end, one or more detection sensors C is associated with each static zone Zs.
Thus, in a non-restrictive example:
sensor C1 is associated with zone ZsA;
sensors C1 and C2 are associated with zone ZsB;
sensors C1, C2 and C3 are associated with zone ZsC;
sensors C2, C3 and C4 are associated with zone ZsD;
sensors C3 and C4 are associated with zone ZsE; and
sensor C4 is associated with zone ZsF.
According to the Bayes formula, the levels of confidence NP associated with each sensor previously calculated are used initially.
There PZs=πiNPci/πNPci[πNpci+(πi(1−NPci))], with i ranging from 1 to n, and n the number of sensor(s) C associated with each static zone Zs.
Thus the probability PZs associated with a static zone is equal to:
PZsA=NPc1
PZsB=(NP c1 *NP c2)/[(NP c1 *NP c2)+((1−NP c1)*(1−NP c2))]
PZsC=(NP c1 *NP c2 *NP c3)/[(NP c1 *NP c2 *NP c3)+((1−NP c1)*(1−NP c2)*(1−NP c3))]
PZsD=(NP c2 *NP c3 *NP c4)/[(NP c2 *NP c3 *NP c4)+((1−NP c2)*(1−NP c3)*(1−NP c4))]
PZsE=(NP c3 *NP c4)/[(NP c3 *NP c4)+((1−NP c3)*(1−NP c4))]
PZsF=NPc4
PZsA=NPc1
PZsB=(NP c1 *NP c2)/[(NP c1 *NP c2)+((1−NP c1)*(1−NP c2))]
PZsC=(NP c1 *NP c2 *NP c3)/[(NP c1 *NP c2 *NP c3)+((1−NP c1)*(1−NP c2)*(1−NP c3))]
PZsD=(NP c2 *NP c3 *NP c4)/[(NP c2 *NP c3 *NP c4)+((1−NP c2)*(1−NP c3)*(1−NP c4))]
PZsE=(NP c3 *NP c4)/[(NP c3 *NP c4)+((1−NP c3)*(1−NP c4))]
PZsF=NPc4
Thus probabilities Pzs associated with each static zone, whose values lie between 0 and 1, are obtained.
In a third sub-step 2 c), dynamic zones of detection Zd are defined.
In a non-restrictive embodiment, for the four front sensors C1 to C4, five dynamic zones Zd are defined as illustrated on FIG. 5 .
These dynamic zones Zd are defined depending on the movement of the vehicle V and the detection sensors C.
These dynamic zones correspond to the collision risk, depending on what the vehicle will do if it turns to the left or the right or keeps in a straight line.
These zones are called:
first zone Zd1=OUT_RF for a dynamic zone furthest on the right of the vehicle V;
second zone Zd2=COR_RF for a dynamic zone on the right of the vehicle V;
third zone Zd3=MID_F for a dynamic zone in the middle of the vehicle V;
fourth zone Zd4=COR_LF for a dynamic zone on the left of the vehicle V; and
fifth zone Zd5=OUT_LF for a dynamic zone furthest on the left of the vehicle V.
In a fourth sub-step 2 d), it is determined if an obstacle O is situated on the path TR of the vehicle, as a function of the probabilities Pzs and the dynamic zones Zd.
In a non-restrictive embodiment, it is determined if an obstacle O is situated on the path TR of the vehicle, depending on the angle at the steering wheel α.
Thus, in a non-restrictive embodiment, determination is executed in the following way.
In a first phase, it is defined in which dynamic zone Zd an obstacle O is situated as follows.
1) An obstacle O is situated in the fourth zone Zd4=COR_LF if:
α=FG & PZsA>S1 or
α=M or MG & PZsB>S2 or
α=MD & PZsC>S3 or
α=FD & PZsD>S4 or
Dc2<DS,
with S1, a first threshold of reliability (which is a value configurable on the vehicle). In a non-restrictive example, S1=0.95.
with S2, a second threshold of reliability (which is a value configurable on the vehicle). In a non-restrictive example, S2=0.95.
with S3, a third threshold of reliability (which is a value configurable on the vehicle). In a non-restrictive example, S3=0.95.
with S4, a fourth threshold of reliability (which is a value configurable on the vehicle). In a non-restrictive example, S4=0.95.
with Dc2 the sensor distance transmitted by the sensor C2.
And with DS a threshold of distance representing a situation where the obstacle O is very close to the vehicle V. In a non-restrictive example, DS=0.8 m.
2) An obstacle O is situated in the second zone Zd2=COR_RF if:
α=FD & PZsF>S1 or
α=M or MG & PZsE>S2 or
α=MD & PZsD>S3 or
α=FG & PZsC>S4 or
Dc3<DS
with Dc3 the sensor distance transmitted by the sensor C3.
It will be noted that here the same thresholds of reliability S1 to S4 are used as previously because they are symmetrical from left to right.
3) An obstacle O is situated in the third zone Zd3=MID_F if:
α=FG & PZsA>S1′ or
α=MG & PZsB>S2′ or
α=MD&PZsE>S2′
α=FD & PZsF>S1′
α=M & (PZsC>S3′∥PZsD>S3′)
Dc2<DS and Dc3<DS,
with S1′, S2′, and S3′ of other thresholds of reliability which have the values: S1′=0.8; S2′=0.9; S3′=0.95 in non-restrictive examples.
In a second phase, the result of the calculations executed above is considered.
If an obstacle O is situated in the fourth dynamic zone COR_LF or in the second dynamic zone COR_RF, it means there is an obstacle O in a left or right corner of the vehicle V. In this case, a corner marker COR_FLG is positioned at one. If not, the marker is positioned at zero.
If an obstacle O is situated in the third dynamic zone MID_F, it means there is an obstacle O in the middle of the path of the vehicle V. In this case, a middle marker MID_FLG is positioned at one. If not, the marker is positioned at zero.
Thus, if one of the two above markers COR_FLG or MID_FLG is positioned at one, it means there is an obstacle O on the path TR of the vehicle V. A path marker INTR_FLG1 is positioned at one.
If not, it means there is none. In this case, in a non-restrictive embodiment, it is determined if an obstacle could be situated on the path TR of the vehicle V in the following way. If PzsB, PzsC, PzsD or PzsE>S7, S7 being a threshold of reliability equal to 0.9, in a non-restrictive example, from this it is deduced that an obstacle O is probably on the path of the vehicle V. In this case, there is no obstacle on the path, but a probable obstacle, that is to say with a level of confidence lower than when the obstacle on the path is calculated (the criteria are thus less restrictive).
A probable path marker INTR_FLG2 is positioned at one.
If not, if PzsA or PzsF>S8, S8 being a threshold of reliability equal to 0.85 in a non-restrictive example, it means there is an obstacle O in front of the vehicle V but which is situated outside the path TR of the vehicle V.
If not, it means there is no obstacle O in front of the vehicle V.
In a third step 3, depending on the critical levels of driving NCR calculated and determination of an obstacle O on the path TR of the vehicle, a decision concerning the braking of the vehicle is made.
Thus,
a) if there is an obstacle O on the path TR of the vehicle (path marker INTR_FLG positioned at one); and
b) if the critical driving marker NCR_FLG (previously calculated during the first step) is higher than a critical threshold NCR_S (in a non-restrictive example of 0.8), from this it is deduced that the obstacle O is critical for the vehicle V. In this case, the decision concerning braking is a decision to trigger automatic braking. In a non-restrictive embodiment, the automatic reduction of the speed of the automotive vehicle V is executed by autonomous braking. Autonomous braking avoids a driver of the automotive vehicle V himself having to slow down using a brake pedal.
In non-restrictive illustrative embodiments, braking can be hydraulic, electro-hydraulic or electric.
In a non-restrictive embodiment, the decision concerning braking is a minimum braking request of the brakes of the vehicle to accelerate triggering of the brakes if there is an obstacle O on the path of the vehicle and if the various critical levels of driving are higher than a given critical threshold NCR_S.
Thus, if the two above conditions a) and b) are met when critical threshold NCR S has a value of 0.7 or when an obstacle is probably on the path TR of the vehicle V (probable path marker INTR_FLG2 at one), this minimum request RQ is initiated.
The minimum braking request RQ is sent by means of a braking command transmitted by a control unit UC.
In the case of hydraulic or electro-hydraulic braking, the braking command is transmitted to a pump ABS located in an ESC “Electronic Stability Control” modulator in order to reduce the hydraulic response time of the brakes, by filling the brake calipers with brake fluid in an anticipated way, creating hydraulic pressure in the brakes which are then “pre-charged”. The pump ABS enables pressure in the brakes of the automotive vehicle V to be generated/removed, while cooperating with a hydraulic modulator unit contained in the ESC modulator, which forces the brake calipers of the disc brake together.
The operation of an ESC modulator being known by the person skilled in the art, it will not be described here.
This function of pre-filling the brakes of the automotive vehicle V with pressure is usually called “brake pre-fill”. In a non-restrictive illustrative embodiment, this minimum braking request RQ enables the pressure of the brakes to be increased by one or two bars.
In the case of electric braking, the braking command is transmitted to an electrical brake motor MB to bring the brake calipers of the disc brake together.
Thus, the method described enables automatic braking to be triggered based on precise parameters (obstacle O on the path of the vehicle, angle at the steering wheel, static and dynamic zones of detection).
The method of the invention is implemented by a device DISP for monitoring the environment of a vehicle capable of moving according to a path, illustrated on FIG. 6 .
This device DISP is integrated in the vehicle V.
This device DISP notably comprises a control unit UC for:
calculating a plurality of critical levels of driving NCR depending on the detection sensors C, parameters related to the vehicle V and an obstacle O being in the environment of the vehicle V;
determining if an obstacle O is on the path TR of the vehicle V; and
depending on the critical levels of driving NCR calculated and determination of an obstacle O on the path TR of the vehicle, making a decision concerning the braking of the vehicle V.
In a non-restrictive embodiment, the control unit UC is moreover capable of:
determining a level of confidence NP associated with a detection sensor depending on a distance Dc transmitted by the detection sensors C;
defining static zones of detection Zs and probabilities of detection PZs associated with each static zone depending on the given levels of confidence NP;
defining dynamic zones of detection Zd; and
determining if an obstacle O is situated on the path TR of the vehicle V, as a function of the probabilities PZs and the dynamic zones Zd.
In a non-restrictive embodiment, the detection device DISP moreover can comprise the detection sensors C1 to C8.
In this application, the detection sensors C are ultrasonic sensors. The advantage of such sensors is their broad cone of detection, their low cost and their omnipresence in the automobile industry. It will be noted that these sensors generally have a range of approximately 2 meters in contrast to detection sensors such as lidars or radars which have a longer range.
It will be noted that implementation of the monitoring method disclosed above can be executed by means of a “software” programmed microprocessor, cabled logic and/or “hardware” electronic components.
Thus, the monitoring device DISP can include a computer program product PG comprising one or more sequences of instructions executable by a data processing device such as a microprocessor or processing unit of a microcontroller, an ASIC, a computer etc, the execution of the sequences of instructions enabling the method described to be implemented.
Such a computer program PG can be installed in writable non-volatile memory of the ROM type or in rewritable nonvolatile memory of the EEPROM or FLASH type. The computer program PG can be written to memory in the works or loaded to memory or remotely downloaded to memory. The sequences of instructions can be sequences of machine instructions or sequences of a control language interpreted by the processing unit at the time of their execution.
In the non-restrictive example of FIG. 6 , the computer program PG is written to a memory in the control unit UC of the device DISP.
Of course the description of the method is not limited to the embodiments and examples described above.
Thus, in a non-restrictive embodiment, the monitoring method can also comprise an additional step to detect whether the vehicle comprises a rear trailer REM (step DETECT_REM as illustrated on FIG. 7 ).
It will be noted that in this case the rear environment of the vehicle V is monitored.
This additional step is executed before the decision concerning braking is made (as illustrated on FIG. 7 ).
This additional step is triggered according to two conditions:
on the one hand if the vehicle V is moving;
in addition if the central rear sensors C6 and C7 are active.
If the two conditions are met, detection of a rear trailer REM is executed as follows.
For each central rear sensor C6 and C7 the difference DIFF is calculated between the speed of the vehicle and the relative speed VitR of the obstacle O, here a rear obstacle O, in relation to the vehicle, the latter being calculated on the basis of the sensor distance Dc provided by the sensor through deriving the distance. If this difference DIFF is equal to zero, it means the obstacle O is stationary in relation to the ground. If the absolute value of the relative speed VitR is zero and the obstacle O is not stationary, it is deduced therefrom that the obstacle O is a trailer REM. Then a trailer marker FLG_REM is positioned at one.
It will be noted that if the difference DIFF calculated is equal to zero and the relative speed VitR is close to zero, it means the vehicle and obstacle O are both stationary.
Thus, if a trailer REM is detected (FLG_REM=1) automatic braking cannot be carried out in reverse. The decision made DEC (NCR, O) is that no automatic braking is executed.
it is simple to implement and can be applied to all braking systems including electric;
it enables ultrasonic sensors, currently used for braking while parking and for speeds greater than in the cases of parking, to be utilized;
it enables braking reaction time to be accelerated thanks to the transmission of the minimum braking request; and
it enables autonomous braking with ultrasonic sensors to be carried out.
While the method herein described, and the form of apparatus for carrying this method into effect, constitute preferred embodiments of this invention, it is to be understood that the invention is not limited to this precise method and form of apparatus, and that changes may be made in either without departing from the scope of the invention, which is defined in the appended claims.
Claims (20)
1. A detection method for monitoring an environment of a vehicle capable of moving according to a path, wherein said method comprises the steps of:
calculating, via a data processor, a plurality of critical levels of driving depending on a plurality of sensed signals from a plurality of ultrasonic detection sensors and at least one of a speed of said vehicle, a detected distance to an obstacle taking account of an angle of a steering wheel said vehicle, and a relative velocity between said vehicle and said obstacle;
determining if said obstacle is on the path of said vehicle; and
determining a level of confidence associated with each of said plurality of ultrasonic detection sensors depending on a distance between said vehicle and said obstacle;
said step of determining if said obstacle is on the path of said vehicle further comprising the steps of:
defining static zones of detection and probabilities of detection associated with each of said static zones of detection in response to the at least one level of confidence;
defining dynamic zones of detection;
determining, for each of said dynamic zones of detection, if said obstacle is on the path of said vehicle as a function of said probabilities of detection and taking into account said angle of said steering wheel; and
deducing a critical marker on a basis of at least two of the critical levels of driving and sending a braking signal for braking said vehicle in response to the determination that said obstacle is on the path of said vehicle and said critical marker is higher than a critical threshold; and
wherein said dynamic zones of detection correspond to a collision risk if said vehicle turns right, turns left or keeping straight.
2. The detection method according to claim 1 , wherein a first critical level of driving is determined depending on an activation of said ultrasonic detection sensors.
3. The detection method according to claim 2 , wherein a second critical level of driving is determined depending on a speed of said vehicle.
4. The detection method according to claim 2 , wherein a third critical level of driving is determined depending on a distance from said obstacle calculated in relation to said vehicle.
5. The detection method according to claim 2 , wherein said first critical level of driving is weighted according to a number of said plurality of ultrasonic detection sensors that have detected said obstacle.
6. The detection method according to claim 1 , wherein a second critical level of driving is determined depending on a speed of said vehicle.
7. The detection method according to claim 6 , wherein a third critical level of driving is determined depending on a distance from said obstacle calculated in relation to said vehicle.
8. The detection method according to claim 1 , wherein a third critical level of driving is determined depending on a distance from said obstacle calculated in relation to said vehicle.
9. The detection method according to claim 8 , wherein said distance of said obstacle is calculated depending on an angle at the steering wheel of said vehicle.
10. The detection method according to claim 9 , wherein, depending on said angle at said steering wheel of said vehicle, only the sensor distances measured by some of said ultrasonic detection sensors are considered.
11. The detection method according to claim 10 , wherein said distance from said obstacle is calculated using the shortest sensor distance among the sensor distances transmitted by said ultrasonic detection sensors considered.
12. The detection method according to claim 1 , wherein a fourth critical level of driving is determined depending on the relative speed of said obstacle in relation to said vehicle.
13. The detection method according to claim 1 , wherein said detection method also comprises an additional step of detecting whether said vehicle comprises a rear trailer.
14. The detection method according to claim 1 , wherein the decision concerning braking is a minimum braking request of the brakes of said vehicle to accelerate triggering of said brakes if said obstacle is on said path of said vehicle and if said critical marker is higher than a given critical threshold.
15. The detection method as recited in claim 1 , wherein said method comprises the step of:
storing a computer program product comprising one or more sequences of computer instructions executable by a data processor in memory, said data processor executing said sequences of instructions.
16. The detection method as recited in claim 1 , wherein said plurality of ultrasonic detection sensors are distributed around the vehicle in a direction corresponding to said angle of said steering wheel.
17. The detection method as recited in claim 1 , wherein said plurality of ultrasonic detection sensors whose signals are considered being those that are associated with said angle of said steering wheel.
18. A detection method for monitoring an environment of a vehicle capable of moving according to a path, wherein said method comprises the steps of;
calculating, via a data processor, a plurality of critical levels of driving depending on a plurality of sensed signals from a plurality of ultrasonic detection sensors and at least one of a speed of said vehicle, a detected distance to an obstacle taking account of an angle of a steering wheel said vehicle, and a relative velocity between said vehicle and said obstacle;
determining if said obstacle is on the path of said vehicle; and
determining a level of confidence associated with each of said plurality of ultrasonic detection sensors depending on a distance between said vehicle and said obstacle;
said steps of determining if said obstacle is on the path of said vehicle further comprising the steps of;
defining static zones of detection and probabilities of detection associated with each of said static zones of detection in response to the least one level of confidence;
defining dynamic zones of detection;
determining, for each of said dynamic zones of detection, if said obstacle is on the path of said vehicle as a function of said probabilities of detection and taking into account said angle of said steering wheel; and
deducting a critical marker on a basis of at least two of the critical levels of driving and sending a braking signal for breaking said vehicle in response to the determination that said obstacle is on the path of said vehicle and said critical marker is higher than a critical threshold; and
wherein said dynamic zones of detection correspond to a collision risk if said vehicle turns right, turns left or keeping straight;
wherein said critical marker is determined on the basis of said calculated critical levels of driving equal to the average of the two highest critical levels of driving.
19. A monitoring device for monitoring an environment of a vehicle capable of moving according to a path, wherein said monitoring device comprises a control unit configured to:
calculate, via a data processor, a plurality of critical levels of driving depending on a plurality of sensed signals from a plurality of ultrasonic detection sensors, and at least one of a speed of said vehicle, a detected distance to an obstacle taking account of an angle of a steering wheel said vehicle, and a relative velocity between said vehicle and said obstacle;
determine if said obstacle is on the path of said vehicle; and
determine a level of confidence associated with each of said plurality of ultrasonic detection sensors depending on a distance between said vehicle and said obstacle;
define static zones of detection and probabilities of detection associated with each of said static zones of detection in response to the at least one level of confidence;
define dynamic zones of detection;
determine, for each of said dynamic zones of detection, if said obstacle is on the path of said vehicle as a function of said probabilities of detection and taking into account, an angle of said steering wheel; and
deduce a critical marker on the basis of at least two of said plurality of critical levels of driving and send a braking signal for braking said vehicle in response to a determination that said obstacle is on the path of said vehicle and the critical marker is higher than a critical threshold;
wherein said dynamic zones of detection correspond to a collision risk if said vehicle turns right, turns left or keeps straight.
20. A detection method for monitoring an environment of a vehicle capable of moving according to a path, wherein said method comprises the steps of;
calculating, via a data processor, a plurality of critical levels of driving depending on a plurality of sensed signals from a plurality of ultrasonic detection sensors and at least one of a speed of said vehicle, a detected distance to an obstacle taking account of an angle of a steering wheel said vehicle, and a relative velocity between said vehicle and said obstacle;
determining if said obstacle is on the path of said vehicle; and
determining a level of confidence associated with each of said plurality of ultrasonic detection sensors depending on a distance between said vehicle and said obstacle;
said step of determining if said obstacle is on the path of said vehicle further comprising the steps of:
defining static zones of detection and probabilities of detection associated with each of said static zones of detection in response to the at least one level of confidence;
defining dynamic zones of detection;
determining, for each of said dynamic zones of detection, if said obstacle is on the path of said vehicle as a function of said probabilities of detection and taking into account said angle of said steering wheel; and
deducting a critical marker on a basis of at least two of the critical levels of driving and sending a braking signal for braking said vehicle in response to the determination that said obstacle is on the path of said vehicle and said critical marker is higher than a critical threshold; and
wherein said dynamic zones of detection correspond to a collision risk if said vehicle turns right, turns left or keeping straight;
wherein a first critical level of driving is determined depending on an activation of said ultrasonic detection sensors;
wherein said critical marker is determined on the basis of said calculated critical levels of driving equal to the average of the two highest critical levels of driving.
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FR0900382A FR2941537B1 (en) | 2009-01-29 | 2009-01-29 | METHOD FOR MONITORING THE ENVIRONMENT OF A MOTOR VEHICLE |
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Also Published As
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EP2221635B1 (en) | 2017-06-07 |
FR2941537A1 (en) | 2010-07-30 |
JP5694669B2 (en) | 2015-04-01 |
EP2221635A3 (en) | 2011-02-16 |
JP2010202180A (en) | 2010-09-16 |
US20100191433A1 (en) | 2010-07-29 |
FR2941537B1 (en) | 2016-02-05 |
EP2221635A2 (en) | 2010-08-25 |
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